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Una manera de saber si algo ha ocurrido realmente es comprobar la imagen del lugar de los hechos. Podemos comprobar si los edificios, comercios, calles, vegetación, clima, vestimenta u otros detalles coinciden con Google Street View.
- Google street views y Google Maps sirven para geolocalizar. Podemos comparar si las calles, edificios o tiendas coinciden con los de la imagen del lugar de los hechos que nos muestra una información. Usaremos para ello la vista satélite o vista de pájaro y la vista de calle (el muñeco amarillo).
- En Google no todos los países están mapeados: para buscar mapas rusos tenemos Yandex Maps, Baidu Maps para mapas chinos y Naver Maps para mapas coreanos.
- Map Checking sirve para estimar número de asistentes a concentraciones.
- Wolfram Alpha es buscador que permite ver el tiempo en un lugar y fecha determinados, y comprobar si coincide con el tiempo que nos muestra la imagen de una noticia. A veces nos llegan imágenes de eventos que han ocurrido y no encontramos ninguna referencia anterior en la búsqueda por imagen. Con esta herramienta podemos comprobar el tiempo que hacía en ese lugar cuando supuestamente ocurrieron los hechos. Por ejemplo, si en la foto llueve, pero según los informes meteorológicos ese día hacía sol.
- SunCalc.net y SunCalc.org permiten ver la orientación y largo de sombras según lugar y hora, y comprobar si coincide con la hora en la que nos dicen que ha ocurrido algo.